DMSense: A non-invasive Diabetes Mellitus Classification System using Photoplethysmogram signal

The alarming statistics of Diabetes Mellitus (DM) Type 2 as the most common and prevalent disease in India and world over [1] has fuelled research in the direction of non-invasive and continuous monitoring of this disease. This paper describes a demonstration of an inexpensive mobile-phone based android application which can collect Photoplethysmogram (PPG) from fingertip via built-in camera and flash and transfer it to a high-end cloud server for early detection of DM. Additionally, this application allows continuous monitoring of DM patients can aid in assisting the short and long-term complication risks. The proposed application is targeted to cater to the inherent demand to for a mobile-based, pervasive system for continuous, non-invasive monitoring and detection of DM. Our application has been successfully deployed on Nexus 5 and tested on controlled and diabetic group with 80% specificity and 84% sensitivity for a 100 patient dataset and presented in this paper.

[1]  V. Ramu Reddy,et al.  Emotion detection and recognition using HRV features derived from photoplethysmogram signals , 2016, ERM4CT@ICMI.

[2]  BOULIN,et al.  Classification and Diagnosis of Diabetes. , 2022, Primary care.

[3]  P. Welch The use of fast Fourier transform for the estimation of power spectra: A method based on time averaging over short, modified periodograms , 1967 .

[4]  Kingshuk Chakravarty,et al.  Person identification from arbitrary position and posture using kinect , 2014, SenSys.

[5]  V. Ramu Reddy,et al.  PerDMCS: Weighted Fusion of PPG Signal Features for Robust and Efficient Diabetes Mellitus Classification , 2017, HEALTHINF.

[6]  Shashidhar G Koolagudi,et al.  CHARACTERIZATION OF EMOTIONS USING THE DYNAMICS OF PROSODIC FEATURES , 2010 .

[7]  V. Ramu Reddy,et al.  Automatic Selection of Binarization Method for Robust OCR , 2013, 2013 12th International Conference on Document Analysis and Recognition.

[8]  Syed Amin Tabish,et al.  Is Diabetes Becoming the Biggest Epidemic of the Twenty-first Century? , 2007, International journal of health sciences.

[9]  Kingshuk Chakravarty,et al.  Person Identification in Natural Static Postures Using Kinect , 2014, ECCV Workshops.

[10]  R. Ferenets,et al.  Photoplethysmographic signal waveform index for detection of increased arterial stiffness , 2014, Physiological measurement.

[11]  2. Classification and Diagnosis of Diabetes , 2014, Diabetes Care.

[12]  Arpan Pal,et al.  Identifying coronary artery disease from photoplethysmogram , 2016, UbiComp Adjunct.

[13]  K. S. Rao,et al.  Characterization of infant cries using spectral and prosodic features , 2012, 2012 National Conference on Communications (NCC).

[14]  Aniruddha Sinha,et al.  Fusion of spectral and time domain features for crowd noise classification system , 2013, 2013 13th International Conference on Intellient Systems Design and Applications.

[15]  V. Ramu Reddy,et al.  Human Activity Recognition from Kinect Captured Data Using Stick Model , 2014, HCI.